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Risk stratification for arrhythmic death in an emergency department cohort: a new method of nonlinear PD2i analysis of the ECG
Heart rate variability (HRV) reflects both cardiac autonomic function and risk of sudden arrhythmic death (AD). Indices of HRV based on linear stochastic models are independent risk factors for AD in postmyocardial infarction (MI) cohorts. Indices based on nonlinear deterministic models have a highe...
Autores principales: | , , , , , , , , , , , , |
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Formato: | Texto |
Lenguaje: | English |
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Dove Medical Press
2008
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2621378/ https://www.ncbi.nlm.nih.gov/pubmed/19209249 |
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author | Skinner, James E Meyer, Michael Dalsey, William C Nester, Brian A Ramalanjaona, George O’Neil, Brian J Mangione, Antoinette Terregino, Carol Moreyra, Abel Weiss, Daniel N Anchin, Jerry M Geary, Una Taggart, Pamela |
author_facet | Skinner, James E Meyer, Michael Dalsey, William C Nester, Brian A Ramalanjaona, George O’Neil, Brian J Mangione, Antoinette Terregino, Carol Moreyra, Abel Weiss, Daniel N Anchin, Jerry M Geary, Una Taggart, Pamela |
author_sort | Skinner, James E |
collection | PubMed |
description | Heart rate variability (HRV) reflects both cardiac autonomic function and risk of sudden arrhythmic death (AD). Indices of HRV based on linear stochastic models are independent risk factors for AD in postmyocardial infarction (MI) cohorts. Indices based on nonlinear deterministic models have a higher sensitivity and specificity for predicting AD in retrospective data. A new nonlinear deterministic model, the automated Point Correlation Dimension (PD2i), was prospectively evaluated for prediction of AD. Patients were enrolled (N = 918) in 6 emergency departments (EDs) upon presentation with chest pain and being determined to be at risk of acute MI (AMI) >7%. Brief digital ECGs (>1000 heartbeats, ∼15 min) were recorded and automated PD2i results obtained. Out-of-hospital AD was determined by modified Hinkle-Thaler criteria. All-cause mortality at 1 year was 6.2%, with 3.5% being ADs. Of the AD fatalities, 34% were without previous history of MI or diagnosis of AMI. The PD2i prediction of AD had sensitivity = 96%, specificity = 85%, negative predictive value = 99%, and relative risk >24.2 (p ≤ 0.001). HRV analysis by the time-dependent nonlinear PD2i algorithm can accurately predict risk of AD in an ED cohort and may have both life-saving and resource-saving implications for individual risk assessment. |
format | Text |
id | pubmed-2621378 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2008 |
publisher | Dove Medical Press |
record_format | MEDLINE/PubMed |
spelling | pubmed-26213782009-02-10 Risk stratification for arrhythmic death in an emergency department cohort: a new method of nonlinear PD2i analysis of the ECG Skinner, James E Meyer, Michael Dalsey, William C Nester, Brian A Ramalanjaona, George O’Neil, Brian J Mangione, Antoinette Terregino, Carol Moreyra, Abel Weiss, Daniel N Anchin, Jerry M Geary, Una Taggart, Pamela Ther Clin Risk Manag Original Research Heart rate variability (HRV) reflects both cardiac autonomic function and risk of sudden arrhythmic death (AD). Indices of HRV based on linear stochastic models are independent risk factors for AD in postmyocardial infarction (MI) cohorts. Indices based on nonlinear deterministic models have a higher sensitivity and specificity for predicting AD in retrospective data. A new nonlinear deterministic model, the automated Point Correlation Dimension (PD2i), was prospectively evaluated for prediction of AD. Patients were enrolled (N = 918) in 6 emergency departments (EDs) upon presentation with chest pain and being determined to be at risk of acute MI (AMI) >7%. Brief digital ECGs (>1000 heartbeats, ∼15 min) were recorded and automated PD2i results obtained. Out-of-hospital AD was determined by modified Hinkle-Thaler criteria. All-cause mortality at 1 year was 6.2%, with 3.5% being ADs. Of the AD fatalities, 34% were without previous history of MI or diagnosis of AMI. The PD2i prediction of AD had sensitivity = 96%, specificity = 85%, negative predictive value = 99%, and relative risk >24.2 (p ≤ 0.001). HRV analysis by the time-dependent nonlinear PD2i algorithm can accurately predict risk of AD in an ED cohort and may have both life-saving and resource-saving implications for individual risk assessment. Dove Medical Press 2008-08 2008-08 /pmc/articles/PMC2621378/ /pubmed/19209249 Text en © 2008 Dove Medical Press Limited. All rights reserved |
spellingShingle | Original Research Skinner, James E Meyer, Michael Dalsey, William C Nester, Brian A Ramalanjaona, George O’Neil, Brian J Mangione, Antoinette Terregino, Carol Moreyra, Abel Weiss, Daniel N Anchin, Jerry M Geary, Una Taggart, Pamela Risk stratification for arrhythmic death in an emergency department cohort: a new method of nonlinear PD2i analysis of the ECG |
title | Risk stratification for arrhythmic death in an emergency department cohort: a new method of nonlinear PD2i analysis of the ECG |
title_full | Risk stratification for arrhythmic death in an emergency department cohort: a new method of nonlinear PD2i analysis of the ECG |
title_fullStr | Risk stratification for arrhythmic death in an emergency department cohort: a new method of nonlinear PD2i analysis of the ECG |
title_full_unstemmed | Risk stratification for arrhythmic death in an emergency department cohort: a new method of nonlinear PD2i analysis of the ECG |
title_short | Risk stratification for arrhythmic death in an emergency department cohort: a new method of nonlinear PD2i analysis of the ECG |
title_sort | risk stratification for arrhythmic death in an emergency department cohort: a new method of nonlinear pd2i analysis of the ecg |
topic | Original Research |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2621378/ https://www.ncbi.nlm.nih.gov/pubmed/19209249 |
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